Unmanned aerial vehicles (UAVs) with mounted base stations are a promising technology for monitoring smart farms. They can provide communication and computation services to extensive agricultural regions. With the assistance of a Multi-Access Edge Computing infrastructure, an aerial base station (ABS) network can provide an energy-efficient solution for smart farms that need to process deadline critical tasks fed by IoT devices deployed on the field. In this paper, we introduce a multi-objective maximization problem and a Q-Learning based method which aim to process these tasks before their deadline while considering the UAVs' hover time. We also present three heuristic baselines to evaluate the performance of our approaches. In addition, we introduce an integer linear programming (ILP) model to define the upper bound of our objective function. The results show that Q-Learning outperforms the baselines in terms of remaining energy levels and percentage of delay violations.
翻译:无人驾驶航空飞行器(无人驾驶飞行器)配备了固定基地站,是监测智能农场的有希望的技术,可以向广大农业地区提供通信和计算服务;在多入区电子计算基础设施的协助下,一个空基站网络可以为需要处理由实地部署的IOT装置提供的最后关键任务的智能农场提供节能解决办法;在本文件中,我们引入了多目标最大化问题和基于Q学习的方法,目的是在最后期限之前处理这些任务,同时考虑无人驾驶飞行器的悬浮时间;我们还提出了评估我们方法绩效的三条超基线;此外,我们引入了一条整形线性编程模型,以确定我们客观功能的上限;结果显示,Q学习在剩余能源水平和延迟违反率方面超过了基线。